Voting based classification method for diabetes prediction

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Abstract

This research work is based on the diabetes prediction analysis. The prediction analysis technique has the three steps which are dataset input, feature extraction and classification. In this previous system, the Support Vector Machine and naïve bayes are applied for the diabetes prediction. In this research work, voting based method is applied for the diabetes prediction. The voting based method is the ensemble based which is applied for the diabetes prediction method. In the voting method, three classifiers are applied which are Support Vector Machine, naïve bayes and decision tree classifier. The existing and proposed methods are implemented in python and results in terms of accuracy, precision-recall and execution time. It is analyzed that voting based method give high performance as compared to other classifiers.

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APA

Kaur, H., & Kaur, G. (2019). Voting based classification method for diabetes prediction. International Journal of Recent Technology and Engineering, 8(2 Special Issue 6), 913–918. https://doi.org/10.35940/ijrte.B1172.0782S619

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